Edit model card

Bunny Mint (XL2-V3-NS)

The model is a very predictable result. Therefore, I recommend using seed with increasing the number of steeps when satisfied with the “draft” with a small number of steps. But predictability and forecasting have the other side of the coin: uniformity of results.


Image 1 Image 2 Image 3 Image 4 Image 5 Image 6 Image 7 Image 8 Image 9

Introduction

BunnyMint is a Pony model based on two finetunes. The first finetune was trained on 8k randomly selected artist images with score:>99 from danbooru for 10 epochs to improve overall aesthetic.

Training

(8k random artist images score:>99) * 10 Epochs

(20k NAIv3 dataset) * 20 Epochs

Total steps: ~480k

Usage

Sample prompt

score_9, score_8_up, score_7_up, source_anime,
1girl, BREAK

joyful, black skirt, white pantyhose, crop top, double v,inside submarine, legs apart, pleated skirt, jumpsuit,
masterpiece,best quality

Negative prompt:

nsfw,censor,extra_fingers,logo,score_4,score_5,score_6,lowres,(bad),text,error,bad hands,fewer,extra,missing,worst quality,jpeg artifacts,low quality,watermark,unfinished,displeasing,oldest,early,chromatic aberration,signature,extra digits,artistic error,username,scan,[abstract]

Settings

Steps: 40 (min 8, low 17)
Sampler: Euler a 
Schedule type: Polyexponential 
CFG scale: 6
Size: 624x912
Hires upscale: 1.5

Since the model is Pony-based, anything Pony related should work here as well.

License

This model is licensed under "Fair-AI public license 1.0-SD", please refer to the original License for more information: https://freedevproject.org/faipl-1.0-sd/

Source

Donate the model author

Finetuning models on personal hardware is pretty costly, so if anyone likes what I do and feels like it, here's my gumroad:

https://lylogummy.gumroad.com/l/avhut

Support

buymeacoffee. Thank you for support!

Downloads last month
65
GGUF
Model size
3.47B params
Architecture
undefined

8-bit

Inference Examples
This model does not have enough activity to be deployed to Inference API (serverless) yet. Increase its social visibility and check back later, or deploy to Inference Endpoints (dedicated) instead.